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An Empirical Study of Multi-Task Learning on BERT for Biomedical Text Mining

Yifan Peng, Qingyu Chen, Zhiyong Lu

202095 citationsDOIOpen Access PDF

Abstract

Multi-task learning (MTL) has achieved remarkable success in natural language processing applications. In this work, we study a multi-task learning model with multiple decoders on varieties of biomedical and clinical natural language processing tasks such as text similarity, relation extraction, named entity recognition, and text inference. Our empirical results demonstrate that the MTL finetuned models outperform state-of-the-art transformer models (e.g., BERT and its variants) by 2.0% and 1.3% in biomedical and clinical domains, respectively. Pairwise MTL further demonstrates more details about which tasks can improve or decrease others. This is particularly helpful in the context that researchers are in the hassle of choosing a suitable model for new problems. The code and models are publicly available at https://github.com/

Topics & Concepts

Computer scienceBiomedical text miningArtificial intelligenceNamed-entity recognitionNatural language processingInferenceRelationship extractionPairwise comparisonDomain adaptationTransformerTask (project management)Context (archaeology)Source codeLanguage modelCode (set theory)Information extractionMachine learningText miningProgramming languagePhysicsQuantum mechanicsVoltageEconomicsPaleontologyBiologyClassifier (UML)Set (abstract data type)ManagementTopic ModelingBiomedical Text Mining and OntologiesNatural Language Processing Techniques